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# Efficient subsetting in R using 2 dataframes

I have a big time series `full` in one dataframe and a list of timestamps in a different dataframe `test`. I need to subset `full` with data points surrounding the timestamps in `test`. My first instinct (as an R noob) was to write the below, which was wrong

``````subs <- subset(full,(full\$dt>test\$dt-i) & (full\$dt<test\$dt+i))
``````

Looking at the result I realized that R is looping through both the vectors simultaneously giving the wrong result. My option is to write a loop like the below:

``````subs<-data.frame()
for (j in test\$dt)
subs <- rbind(subs,subset(full,full\$dt>(j-i) & full\$dt<(j+i)))
``````

I feel that there might be a better way to do loops and this article implores us to avoid R loops as much as possible. The other reason is I might be hitting up against performance issues as this would be at the heart of an optimization algorithm. Any suggestions from gurus would be greatly appreciated.

EDIT:

Here is some reproducible code that shows the wrong approach as well as the approach that works but could be better.

``````#create a times series
full <- data.frame(seq(1:200),rnorm(200,0,1))
colnames(full)<-c("dt","val")

#my smaller array of points of interest
test <- data.frame(seq(5,200,by=23))
colnames(test)<-c("dt")

# my range around the points of interset
i<-3

#the wrong approach
subs <- subset(full,(full\$dt>test\$dt-i) & (full\$dt<test\$dt+i))

#this works, but not sure this is the best way to go about it
subs<-data.frame()
for (j in test\$dt)
subs <- rbind(subs,subset(full,full\$dt>(j-i) & full\$dt<(j+i)))
``````

EDIT: I updated the values to better reflect my usecase, and I see @mrdwab 's solution pulling ahead unexpectedly and by a wide margin.

I am using benchmark code from @mrdwab and the initialization is as follows:

``````set.seed(1)

full <- data.frame(
dt  = 1:15000000,
val = floor(rnorm(15000000,0,1))
)

test <- data.frame(dt = floor(runif(24,1,15000000)))

i <- 500
``````

The benchmarks are:

``````       test replications elapsed relative
2    mrdwab            2    1.31  1.00000
3 spacedman            2   69.06 52.71756
1    andrie            2   93.68 71.51145
4  original            2  114.24 87.20611
``````

Totally unexpected. Mind = blown. Can someone please shed some light in this dark corner and enlighten as to what is happening.

Important: As @mrdwab notes below, his solution works only if the vectors are integers. If not, @spacedman has the right solution

-
Welcome to Stack Overflow! If you made a reproducible example that demonstrates your question / problem, we would find it easier to answer. – Andrie Aug 27 '12 at 6:39
You need to clarify what sort of test needs to be done to determine "surrounding" Will there be expected overlaps in the rows selected as might happen with a moving average? Or a fixed distance in time with variable numbers identified in each group? Or ... what? – 42- Aug 27 '12 at 6:42
I am creating the reproducible example. thanks for the comments. Editing it shortly – Generalenthu Aug 27 '12 at 6:52
@Andrie added the reproducible code. – Generalenthu Aug 27 '12 at 7:09
You should unaccept my answer and reaccept @Spacedman. The reason my solution is so fast is that there's nothing to match to! My solution (as it is) matches exact numbers, which is what I thought you were looking for from your original post. But with this update shows that since you're using `runif`, my solution won't work as it is. – A Handcart And Mohair Aug 29 '12 at 4:47

I don't know if it's any more efficient, but I would think you could also do something like this to get what you want:

``````subs <- apply(test, 1, function(x) c((x-2):(x+2)))
full[which(full\$dt %in% subs), ]
``````

I had to adjust your "3" to "2" since `x` would be included both ways.

## Benchmarking (just for fun)

First, the required data and functions.

``````## Data
set.seed(1)

full <- data.frame(
dt  = 1:200,
val = rnorm(200,0,1)
)

test <- data.frame(dt = seq(5,200,by=23))

i <- 3

## Spacedman's functions
cf = function(l,u){force(l);force(u);function(x){x>l & x<u}}
OR = function(f1,f2){force(f1);force(f2);function(x){f1(x)|f2(x)}}
funs = mapply(cf,test\$dt-i,test\$dt+i)
anyF = Reduce(OR,funs)
``````

Second, the benchmarking.

``````## Benchmarking
require(rbenchmark)
benchmark(andrie = do.call(rbind,
lapply(test\$dt,
function(j) full[full\$dt > (j-i) &
full\$dt < (j+i), ])),
mrdwab = {subs <- apply(test, 1,
function(x) c((x-(i-1)):(x+(i-1))))
full[which(full\$dt %in% subs), ]},
spacedman = full[anyF(full\$dt),],
original = {subs <- data.frame()
for (j in test\$dt)
subs <- rbind(subs,
subset(full, full\$dt > (j-i) &
full\$dt < (j+i)))},
columns = c("test", "replications", "elapsed", "relative"),
order = "relative")
#        test replications elapsed  relative
# 3 spacedman          100   0.064  1.000000
# 2    mrdwab          100   0.105  1.640625
# 1    andrie          100   0.520  8.125000
# 4  original          100   1.080 16.875000
``````
-
@spacedman please see my updated question with benchmark above. – Generalenthu Aug 29 '12 at 0:10

Here's a real R way to do it. Functionally. No loops...

Starting with Andrie's example data.

First, an interval comparison function:

``````> cf = function(l,u){force(l);force(u);function(x){x>l & x<u}}
``````

An OR composition function:

``````> OR = function(f1,f2){force(f1);force(f2);function(x){f1(x)|f2(x)}}
``````

Now there's sort of a loop here, to construct a list of those comparison functions:

``````> funs = mapply(cf,test\$dt-i,test\$dt+i)
``````

Now combine all those into one function:

``````> anyF = Reduce(OR,funs)
``````

And now we apply the OR composition to our interval testing functions:

``````> head(full[anyF(full\$dt),])
dt         val
3   3 -0.83562861
4   4  1.59528080
5   5  0.32950777
6   6 -0.82046838
7   7  0.48742905
26 26 -0.05612874
``````

What you've got now is a function of a single variable that tests if the value is in the ranges you defined.

``````> anyF(1:10)
[1] FALSE FALSE  TRUE  TRUE  TRUE  TRUE  TRUE FALSE FALSE FALSE
``````

I don't know if this is faster, or better, or what. Someone do some benchmarks!

-
Looks like this really more efficient. I am having trouble getting to the right answer though in my algo, something I am missing for sure on my side. Will follow up tomorrow. thanks! – Generalenthu Aug 27 '12 at 9:22
Update: This has been unbelievably fast, 22 seconds runtime on my dataset vs a 90 seconds with my prior version. I am realizing that this is what R being a functional language is all about - extreme amount of flexibility in crafting your functions and have them efficiently chew through your data. Thank you! Wish I could upvote multiple times. – Generalenthu Aug 28 '12 at 3:25
@Spacedman, benchmarks done and yes, this was the fastest approach. +1 – A Handcart And Mohair Aug 28 '12 at 6:36
Wow I'm surprised! There's another inefficiency still there though. When executing a chain of logical-OR conditions you can stop if any of them are TRUE - there's no need to keep computing the rest of the conditions. Because R works with vectors though, it will do all the OR ops on all the elements of the vectors. There may be a way of coding it so that each OR only works on the elements that haven't been TRUE yet, but then you get into a trade off that depends on how much of your data you expect to end up TRUE... Anyway, hand-coded C could do this and be even faster (I predict ~0.2s) – Spacedman Aug 28 '12 at 7:28
At least in my case its not a a big problem. my `full` is about 15e6 rows, and I am pulling about 20-30 subsets of about 500 elements. into `test`. I am benchmarking to do a single replication and its taking a while probably because the algo from @mrdwab wouldn't work well for my case with really big subsets. Thanks! – Generalenthu Aug 28 '12 at 8:40

There is nothing inherently wrong with your code. To achieve your aim, you need a loop of some sort around a vectorised subset operation.

But here is more R-ish way to do it, which might well be faster:

``````do.call(rbind,
lapply(test\$dt, function(j)full[full\$dt > (j-i) & full\$dt < (j+i), ])
)
``````

PS: You can significantly simplify your reproducible example:

``````set.seed(1)

full <- data.frame(
dt  = 1:200,
val = rnorm(200,0,1)
)

test <- data.frame(dt = seq(5,200,by=23))

i <- 3

xx <- do.call(rbind,
lapply(test\$dt, function(j)full[full\$dt > (j-i) & full\$dt < (j+i), ])
)

dt         val
3   3 -0.83562861
4   4  1.59528080
5   5  0.32950777
6   6 -0.82046838
7   7  0.48742905
26 26 -0.05612874
``````
-
Thanks @Andrie. This is my 3rd day with R as well as SO. I am not a programmer by day, but SO has been great – Generalenthu Aug 27 '12 at 7:37
Depending on what you've programmed in before R you might find my answer better. But I doubt it, unless you've come here from LISP or Haskell or INTERCAL... – Spacedman Aug 27 '12 at 8:16
+1 for INTERCAL – SlowLearner Aug 27 '12 at 12:03

one more way using data.tables:

``````{
temp <- data.table(x=unique(c(full\$dt,(test\$dt-i),(test\$dt+i))),key="x")
temp[,index:=1:nrow(temp)]
startpoints <- temp[J(test\$dt-i),index]\$index
endpoints <- temp[J(test\$dt+i),index]\$index
allpoints <- as.vector(mapply(FUN=function(x,y) x:y,x=startpoints,y=endpoints))
setkey(x=temp,index)
ans <- temp[J(allpoints)]\$x
}
``````

benchmarks: number of rows in test:9 number of rows in full:10000

``````       test replications elapsed relative
1 spacedman          100   0.406    1.000
2       new          100   1.179    2.904
``````

number of rows in full:100000

``````       test replications elapsed relative
2       new          100   2.374    1.000
1 spacedman          100   3.753    1.581
``````
-